Improvement of a facial recognition system based on one shot camera
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Abstract
In recent years, one-shot cameras that integrate Multispectral
Filter Arrays (MSFA) are used to acquire multispectral images. In
a previous paper, we have proposed a multispectral image
recognition system based on this type of camera. The images
acquired with these cameras are then demosaiced. Multispectral
facial images acquired with our MSFA one-shot camera present
information redundancy which leads to a strong correlation
between bands. A dimensionality reduction is necessary to reduce
information redundancy. Dimensionality reduction is a set of
techniques that allow to project an initial image of dimension n
into a final image of dimension p, while preserving its relevant
information. This paper proposes an improvement of facial
recognition system using the Multispectral Filter Array one shot
camera. A dimensionality reduction module has been added to the
system. A comparison of the performance of different
dimensionality reduction methods based on the eigenvalues, and
VGG19 classification results are conducted. Experimental results
on the EXIST database made up with our camera indicate a good
decorrelation of the bands leading to the reduction of bands from
eight to three with the Karhuen-Love transform and an accuracy of
100% with VGG19. The application of the dimension reduction
method resulted in a 15 % gain in processing time always reaching
an accuracy of 100%.
